Göktekin Mehmet Çağrı, Gül Evrim, Aksu Feyza, Gül Yeliz, Özen Metehan, Salik Yusuf, Önal Merve Kesim, Avci Engin
Department of Emergency Medicine, Firat University, 23119 Elazig, Turkey.
Department of Anatomy, Firat University, 23119 Elazig, Turkey.
Diagnostics (Basel). 2025 Aug 1;15(15):1938. doi: 10.3390/diagnostics15151938.
: Rib fracture detection holds critical importance in the field of medical image processing. : In this study, two different data augmentation methods, traditional data augmentation (Albumentations) and focused data augmentation (focused augmentation), were compared using computed tomography (CT) images for the detection of rib fractures on YOLOv8n, YOLOv8s, and YOLOv8m models. While the traditional data augmentation method applies general transformations to the entire image, the focused data augmentation method performs specific transformations by targeting only the fracture regions. : The model performance was evaluated using the Precision, Recall, mAP@50, and mAP@50-95 metrics. The findings revealed that the focused data augmentation method achieved superior performance in certain metrics. Specifically, analysis on the YOLOv8s model showed that the focused data augmentation method increased the mAP@50 value by 2.18%, reaching 0.9412, and improved the recall value for fracture detection by 5.70%, reaching 0.8766. On the other hand, the traditional data augmentation method achieved better results in overall precision metrics with the YOLOv8m model and provided a slight advantage in the mAP@50 value. : The study indicates that focused data augmentation can contribute to achieving more reliable and accurate results in medical imaging applications.
肋骨骨折检测在医学图像处理领域至关重要。在本研究中,使用计算机断层扫描(CT)图像,在YOLOv8n、YOLOv8s和YOLOv8m模型上比较了两种不同的数据增强方法,即传统数据增强(Albumentations)和聚焦数据增强(聚焦增强),以检测肋骨骨折。传统数据增强方法对整个图像应用通用变换,而聚焦数据增强方法仅针对骨折区域进行特定变换。使用精确率、召回率、mAP@50和mAP@50 - 95指标评估模型性能。研究结果表明,聚焦数据增强方法在某些指标上表现更优。具体而言,对YOLOv8s模型的分析显示,聚焦数据增强方法使mAP@50值提高了2.18%,达到0.9412,并将骨折检测的召回率提高了5.70%,达到0.8766。另一方面,传统数据增强方法在YOLOv8m模型的整体精确率指标上取得了更好的结果,并且在mAP@50值上略有优势。该研究表明,聚焦数据增强有助于在医学成像应用中获得更可靠、准确的结果。